The focus of the present paper is on clustering, namely the problem of finding distinct groups in a dataset so that each group consists of similar observations. We consider the finite mixtures of regression models, given their flexibility in modeling heterogeneous time series. Our study aims to implement a novel approach, which fits mixture models based on the spline and polynomial regression in the case of auto-correlated data, to cluster time series in an unsupervised machine learning framework. Given the assumption of auto-correlated data and the usage of exogenous variables in the mixture model, the usual approach of estimating the maximum likelihood parameters using the Expectation–Maximization (EM) algorithm is computationally prohibi...
In several empirical applications analyzing customer-by-product choice data, it may be relevant to p...
A new family of mixture models for the model-based clustering of longitudinal data is introduced. ...
International audienceThe analysis of finite mixture models for exponential repeated data is conside...
Finite mixture models are being increasingly used to model the distributions of a wide variety of ra...
In this paper we address the problem of clustering trajectories, namely sets of short sequences of d...
Clustering is a widely used statistical tool to determine subsets in a given data set. Frequently us...
This thesis proposes a hierarchical clustering algorithm for time series, comprised of a variational...
Clustering time series is an active research area with applications in many fields. One common featu...
Clustering techniques are often performed to reduce the dimension of very large datasets, whose dire...
Cluster analysis seeks to identify homogeneous subgroups of cases in a population. This article prov...
Abstract. In this study we present a new sparse polynomial regression mixture model for fitting time...
We present an approach to clustering time series data using a model-based generalization of the K-Me...
Mixture model-based clustering, usually applied to multidimensional data, has become a popular appro...
Many researchers treat ordinal variables as continuous or nominal. Losing ordering information makes...
Considering the issue of energy consumption reduction in industrial plants, we investigated a cluste...
In several empirical applications analyzing customer-by-product choice data, it may be relevant to p...
A new family of mixture models for the model-based clustering of longitudinal data is introduced. ...
International audienceThe analysis of finite mixture models for exponential repeated data is conside...
Finite mixture models are being increasingly used to model the distributions of a wide variety of ra...
In this paper we address the problem of clustering trajectories, namely sets of short sequences of d...
Clustering is a widely used statistical tool to determine subsets in a given data set. Frequently us...
This thesis proposes a hierarchical clustering algorithm for time series, comprised of a variational...
Clustering time series is an active research area with applications in many fields. One common featu...
Clustering techniques are often performed to reduce the dimension of very large datasets, whose dire...
Cluster analysis seeks to identify homogeneous subgroups of cases in a population. This article prov...
Abstract. In this study we present a new sparse polynomial regression mixture model for fitting time...
We present an approach to clustering time series data using a model-based generalization of the K-Me...
Mixture model-based clustering, usually applied to multidimensional data, has become a popular appro...
Many researchers treat ordinal variables as continuous or nominal. Losing ordering information makes...
Considering the issue of energy consumption reduction in industrial plants, we investigated a cluste...
In several empirical applications analyzing customer-by-product choice data, it may be relevant to p...
A new family of mixture models for the model-based clustering of longitudinal data is introduced. ...
International audienceThe analysis of finite mixture models for exponential repeated data is conside...